Reaching Optimum Solutions for the Low Power Hard Real-Time Task Allocation on Multiple Heterogeneous Processors Problem

E. Valentin, Rosiane de Freitas, R. Barreto
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引用次数: 2

Abstract

The usage of heterogeneous multicore platforms is appealing for applications, e.g. hard real-time systems, due to the potential reduced energy consumption offered by such platforms. However, the power wall is still a barrier to improving the processor design process due to the power consumption of components. Hard real-time systems are part of life critical environments and reducing the energy consumption on such systems is an onerous and complex process. This paper assesses the problem of finding optimum allocations and frequency assignments of hard real-time tasks among heterogeneous processors targeting low power consumption but taking into account timing constraints. We also propose models based on a well-established formulation in the operational research literature of the Multilevel Generalized Assignment Problem (MGAP). We tackle the problem from the perspective of different integer programming mathematical formulations and their interplay on the search for optimal solutions for RM and EDF. Computational experiments show that providing upper bounds determined by a meta-heuristic based on genetic algorithm reduces the time to finding optimal solution from hours to milliseconds, enabling us to still pursue optimum in larger instances.
多异构处理器低功耗硬实时任务分配问题的最优解
异构多核平台的使用对应用程序很有吸引力,例如硬实时系统,因为这些平台提供了潜在的降低能耗。然而,由于元件的功耗,功耗墙仍然是改进处理器设计过程的障碍。硬实时系统是生命关键环境的一部分,降低此类系统的能耗是一个繁重而复杂的过程。本文评估了在考虑时间约束的情况下,以低功耗为目标的异构处理器之间寻找硬实时任务的最佳分配和频率分配问题。我们还提出了基于运筹学文献中多层广义分配问题(MGAP)的完善公式的模型。我们从不同的整数规划数学公式及其在RM和EDF的最优解搜索中的相互作用的角度来解决这个问题。计算实验表明,提供由基于遗传算法的元启发式确定的上界将找到最优解的时间从几个小时减少到几毫秒,使我们能够在更大的实例中仍然追求最优。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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